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Julia Hippisley-Cox University of Nottingham June 2013

Open Pseudonymisation . Julia Hippisley-Cox University of Nottingham June 2013. My roles. Professor clinical epidemiology NHS GP Co-Director QResearch database with Shaun O’Hanlon from EMIS Director ClinRisk Ltd ( sowftare company) Previously member of ECC

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Julia Hippisley-Cox University of Nottingham June 2013

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  1. Open Pseudonymisation Julia Hippisley-CoxUniversity of NottinghamJune 2013

  2. My roles • Professor clinical epidemiology • NHS GP • Co-Director QResearch database with Shaun O’Hanlon from EMIS • Director ClinRisk Ltd (sowftarecompany) • Previously member of ECC • Current member Confidentiality Advisory Group, HRA

  3. Key objectives for safe data sharing Maximise public benefit Patient and their data Minimise risk Privacy Maintain public trust

  4. Three main options for data access S251 statute Maximise public benefit consent Pseudo nymisation Patient and their data Minimise risk Privacy Maintain public trust

  5. Policy context • Transparency Agenda • Open Data • Caldicott2 • Benefits of linkage for (in order from document) • Industry • Research • commissioners • Patients • service users • public

  6. Objectives • Open common technical approach for pseudonymisation • allows individual record linkage BETWEEN organisations • WITHOUT disclosure strong identifiers • Inter-operability • Voluntary ‘industry’ specification • One of many approaches

  7. Attendances at 3 workshops • East London CSUs • GP suppliers – TPP, EMIS, INPS, microtest • NHSE, HSCIC, ISB, ONS, screening committee • CPRD, THIN, ResearchOne, IMS • PHCSG, BMA, RCGP, GP system user groups, Various universities • Cerner & other pseud companies (Oka Bi, Sapioretc)

  8. Ground rules: all outputs from workshop • Published • Open • Freely available • Can be adapted & developed • Complement existing approaches

  9. Big Data or Big Headache • Need to protect patient confidentiality • Maintain public trust • Data protection • Freedom of Information • Information Governance • ‘safe de-identified format’

  10. Assumptions • Pseudonymisation is desired “end state” for data sharing for purposes other than direct care • Legitimate use of data • legitimate purpose • legitimate applicant or organisation • Ethics and governance approval in place • Appropriate data sharing agreements

  11. Working definition of pseudonymisation • Technical process applied to identifiers which replaces them with pseudonyms • Enables us to distinguish between individual without enabling that individual identified • Either reversible or irreversible • Part of de-identification

  12. Identifiable information • person identifier that will ordinarily identify a person. Examples include: • Name • Address • Dob • Postcode • NHS number • telephone no • Email • (local GP practice or trust number)

  13. Benefits pseudonymisation • Better for patient confidentiality • Better for practice and public confidence • Better to enforcing in data that simply reply on contracts/trust • Don’t need s251 • Don’t need to handle SARS • Can retain data longer & hold more data. • Don’t need to handle opt outs and delete data from live systems backups

  14. Open pseudonymiser approach • Need approach which doesn’t extract identifiable data but still allows linkage • Legal ethical and NIGB approvals • Secure, Scalable • Reliable, Affordable • Generates ID which are Unique to project • Can be used by any set of organisations wishing to share data • Pseudonymisation applied as close as possible to identifiable data ie within clinical systems

  15. Pseudonymisation: method • Scrambles NHS number BEFORE extraction from clinical system • Takes NHS number + project specific encrypted ‘salt code’ • One way hashing algorithm (SHA2-256) – no collisions and US standard from 2010 • Applied twice - before leaving clinical system & on receipt by next organisation • Apply identical software to second dataset • Allows two pseudonymised datasets to be linked • Cant be reversed engineered

  16. Web tool to create encrypted salt: proof of concept • Web site private key used to encrypt user defined project specific salt • Encrypted salt distributed to relevant data supplier with identifiable data • Public key in supplier’s software to decrypt salt at run time and concatenate to NHS number (or equivalent) • Hash then applied • Resulting ID then unique to patient within project

  17. Openpseudonymiser.org • Website for evaluation and testing with • Desktop application • DLL for integration • Test data • Documentation • Utility to generate encrypted salt codes • Source code GNU LGPL

  18. Current implementations • EMIS – 56% of GP practices • TPP – 20% GP practices • Office National Statistics • HSCIC • Bromley LAT • United Health (in progress) • Two CSU’s (in progress)

  19. Key points • Pseudonymisation at source • Instead of extracting identifiers and storing lookup tables/keys centrally, then technology to generate key is stored within the clinical systems • Use of project specific encrypted salted hash ensures secure sets of ID unique to project • Full control of data controller • Can work in addition to existing approaches • Open source technology so transparent & free

  20. Qresearch data linkage projects • Link HES, Cancer, deaths to QResearch • NHS number complete and valid in > 99.7% • Successfully applied OpenP • - Information Centre • - ONS cancer data • - ONS mortality data • - GP data (EMIS systems)

  21. QAdmissions • New risk stratification tool to identify risk emergency admission • Modelled using GP-HES-ONS linked data • Can apply to linked data or GP data only • NHS number complete & valid 99.8% • 97% of dead patient have matching ONS deaths record • High concordance of year of birth, deprivation scores

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